Combining Agent-Based Modeling and Life Cycle Assessment for the Evaluation of Mobility Policies
Authored by Querini Florent, Benetto Enrico
Date Published: 2015
DOI: 10.1021/es5060868
Sponsors:
Luxembourg National Research Fund
Platforms:
No platforms listed
Model Documentation:
Other Narrative
Model Code URLs:
Model code not found
Abstract
This article presents agent-based modeling (ABM) as a novel approach for
consequential life cycle assessment (C-LCA) of large scale policies, more specifically mobility-related policies. The approach is validated
at the Luxembourgish level (as a first case study). The agent-based
model simulates the car market (sales, use, and dismantling) of the
population of users in the period 2013-2020, following the
implementation of different mobility policies and available electric
vehicles. The resulting changes in the car fleet composition as well as
the hourly uses of the vehicles are then used to derive consistent LCA
results, representing the consequences of the policies. Policies will
have significant environmental consequences: when using ReCiPe2008, we
observe a decrease of global warming, fossil depletion, acidification, ozone depletion, and photochemical ozone formation and an increase of
metal depletion, ionizing radiations, marine eutrophication, and
particulate matter formation. The study clearly shows that the
extrapolation of LCA results for the circulating fleet at national scale
following the introduction of the policies from the LCAs of single
vehicles by simple up-scaling (using hypothetical deployment scenarios)
would be flawed. The inventory has to be directly conducted at full
scale and to this aim, ABM is indeed a promising approach, as it allows
identifying and quantifying emerging effects while modeling the Life
Cycle Inventory of vehicles at microscale through the concept of agents.
Tags
Batteries
electric vehicles
Environmental impacts
Framework
Hybrid
System
Ion